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Mongo newbie running 32-bit Mongo 2.0.1 on Windows XP. No option at present to run 64-bit.

I want to use Mongo to map-reduce a set of 60 files, each a monthly snapshot of the same 20,000 row x 100 column table. Ideally I'd put them all in one collection - and although this comes to about 1.2GB of csv data, it's well over 2GB of mongoimport'ed data.

Question: should I program around this (60 map reduces) or is there a not-too-cumbersome engineering solution that a Mongo newbie could tackle (either w sharding or some trick that results in less bloated storage given that the underlying data is really a simple table w defined columns).

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I think that the best way to work-around the 32 bit Limit, is using sharding. – Raduq Santos Dec 16 '11 at 14:02
honestly the best way to fix this is by upgrading to a 64 bit machine. You're really losing a ton by not doing this. – Petrogad Dec 16 '11 at 14:41
it's a bank, they don't upgrade so fast ... not my choice – tpascale Dec 16 '11 at 14:56
up vote 6 down vote accepted

You can go over the 2Gb limit by sharding. The 2Gb limit applies to individual mongod processes, rather than the total data in the sharded dataset.

Here is some documentation about getting started with sharding. There is also a Python script for setting up a sharded environment on a single machine. I assume it will work on Windows.

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Is there an example that shows how to configure sharding processes on a single windows machine that's easy to follow? That's what I'm looking for. – tpascale Dec 16 '11 at 14:30
Try taking a look here: the process on windows should be very similar. – Tyler Brock Dec 16 '11 at 15:29

If you don't have 64-bit, my best recommendation is you don't. It would be too cumbersome to manage them to be under 32-bit process. It would probably be better to explore hadoop for your purpose.

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